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Fuzzy-based multi-kernel spherical support vector machine for effective handwritten character recognition

机译:基于模糊的多核球形支持向量机用于有效手写字符识别

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Due to constant advancement of computer tools, automated conversion of images of typed,handwritten and printed text is important for various applications, which has led to intense research for several years in the field of offline handwritten character recognition. Handwritten character recognition is complex because characters differ by writing style, shapes and writing devices. To resolve this problem, we propose a fuzzy-based multi-kernel spherical support vector machine. Initially, the input image is fed into the pre-processing step to acquire suitable images. Then, histogram of oriented gradient (HOG) descriptor is utilised forfeature extraction. The HOG descriptor constitutes a histogram estimation and normalisation computation. The features are then classified using the proposed classifier for character recognition. In the proposed classifier, we design a new multi-kernel function based on the fuzzy triangular membership function. Finally, a newly developed multi-kernel function is incorporated into the spherical support vector machine to enhance the performance significantly. The experimental results are evaluated and performance is analysed by metrics such as false acceptance rate, false rejection rate and accuracy, which is implemented in MATLAB. Then, the performance is compared with existing systems based on the percentage of training data samples. Thus, the outcome of our proposed system attains 99% higher accuracy, which ensures efficient recognition performance.
机译:由于计算机工具的不断发展,打字,手写和印刷文本的图像的自动转换对于各种应用很重要,这导致在离线手写字符识别领域进行了数年的深入研究。手写字符识别很复杂,因为字符会因书写样式,形状和书写方式而有所不同。为了解决这个问题,我们提出了一种基于模糊的多核球形支持向量机。最初,将输入图像输入到预处理步骤中以获取合适的图像。然后,将定向梯度直方图(HOG)描述符用于特征提取。 HOG描述符构成直方图估计和归一化计算。然后使用建议的分类器对特征进行分类,以进行字符识别。在提出的分类器中,我们基于模糊三角隶属函数设计了一个新的多核函数。最后,将新开发的多核函数合并到球形支持向量机中以显着增强性能。通过在MATLAB中实现的错误接受率,错误拒绝率和准确性等指标来评估实验结果并分析性能。然后,根据训练数据样本的百分比将性能与现有系统进行比较。因此,我们提出的系统的结果可将精度提高99%,从而确保了高效的识别性能。

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